Title :
Low-complexity sequential non-parametric signal classification for wideband cognitive radios
Author :
Bkassiny, Mario ; Jayaweera, Sudharman K.
Author_Institution :
Dept. of Electr. & Comput. Eng., State Univ. of New York at Oswego, New York, NY, USA
Abstract :
This paper addresses the computational complexity of the Dirichlet process mixture model (DPMM)-based Bayesian non-parametric classifier in cognitive radios (CR´s). The DPMM is an ideal signal classification tool for wideband CR´s (W-CR´s) due to its non-parametric structure. However, it can incur a high computational complexity since it usually requires a large number of Gibbs sampling iterations. To address this issue, we first propose a parameter selection policy that efficiently selects the cluster parameters at each Gibbs sampling iteration, leading to a faster convergence to the stationary distribution of the underlying Markov Chain Monte Carlo (MCMC). Next, we propose a sequential DPMM classifier based on a recursive formulation that allows real-time classification of newly detected signals. The proposed algorithms are shown to significantly reduce the computational burden of the DPMM-based classifier, making it suitable for both large-scale and real-time CR applications.
Keywords :
Bayes methods; Markov processes; Monte Carlo methods; cognitive radio; computational complexity; nonparametric statistics; recursive estimation; signal classification; signal sampling; DPMM-based Bayesian nonparametric classifier; Dirichlet process mixture model; Gibbs sampling iterations; Markov Chain Monte Carlo; cluster parameters; computational complexity; low-complexity sequential nonparametric signal classification; nonparametric structure; parameter selection policy; real-time classification; recursive formulation; stationary distribution; wideband cognitive radios; Classification algorithms; Clustering algorithms; Convergence; Feature extraction; Real-time systems; Sensors; Vectors; Bayesian non-parametric classification; Dirichlet process mixture model; Gibbs sampling; Markov Chain Monte Carlo; cognitive radios; machine learning; unsupervised learning;
Conference_Titel :
Telecommunication Systems Services and Applications (TSSA), 2014 8th International Conference on
DOI :
10.1109/TSSA.2014.7065908